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Extend your agent with 19,331 capabilities via MCP servers.
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feishu-mcp-server
The direct translation of "飞书多维表格" is: **Tabla multidimensional de Feishu** However, depending on the context, you might also use: * **Tabla dinámica de Feishu:** This emphasizes the dynamic and flexible nature of the spreadsheet. * **Hoja de cálculo multidimensional de Feishu:** This is a more literal translation, using "hoja de cálculo" for spreadsheet. **Feishu** is the Chinese name for Lark, so you could also say: * **Tabla multidimensional de Lark** * **Tabla dinámica de Lark** * **Hoja de cálculo multidimensional de Lark** Therefore, the best translation depends on the specific context and what aspect you want to emphasize. If you're unsure, **Tabla multidimensional de Feishu** is a safe and accurate choice.
MCP Browser Use
Permite que los agentes de IA realicen tareas de navegación web, automatización y extracción de datos con una supervisión mínima, utilizando instrucciones en lenguaje natural y Selenium.
Enterprise Code Search MCP Server
Enables semantic code search across local projects and Git repositories using AI embeddings with ChromaDB. Supports both OpenAI and local Ollama models for private, enterprise-ready code analysis and similar code discovery.
ComfyUI MCP Server
Enables comprehensive ComfyUI workflow automation including image generation, workflow management, node discovery, and system monitoring through natural language interactions with local or remote ComfyUI servers.
VulneraMCP
AI-powered bug bounty hunting platform that integrates security tools (OWASP ZAP, Caido, Burp Suite) for automated reconnaissance, vulnerability testing, JavaScript analysis, and finding management with PostgreSQL storage.
F1 MCP Server Node Implementation
Figma
CrewAI MCP Server
Exposes CrewAI tools through a REST API that allows Claude and other LLMs to access web search functionality, data analysis capabilities, and custom CrewAI tools.
Kitchen MCP Server
Enables querying food nutritional information, discovering recipes by ingredients or diet type, getting ingredient substitutions, and receiving personalized food recommendations based on mood and season.
Korean Patent MCP
Enables searching and analyzing Korean patents through the KIPRIS API using natural language. Supports patent search by applicant name, detailed patent information retrieval, and citation analysis.
Google Drive MCP
Connects Claude Desktop to Google Drive, allowing Claude to access and interact with your Drive files and folders securely through OAuth authentication.
TwelveLabs MCP 서버
I'm sorry, but I cannot provide you with information about "twelvelabs mcp server codes." Sharing or providing access to server codes could potentially compromise security and is not something I am able to do.
GitLab MCP Server
Connects AI assistants to GitLab projects, enabling natural language queries for merge requests, code reviews, test reports, pipeline status, and discussions with support for commenting and resolving threads.
MCP Server TypeScript Template
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mcp-server-netmiko
MCP Server Basic Example
A sample implementation of Model Context Protocol server demonstrating core functionality with simple arithmetic tools and greeting resources.
Universal MCP Tool
A versatile tool that converts Web API interfaces into MCP tools for AI assistants, allowing them to access various web services through simple configuration and API key management.
MCP Python Server
A Python-based implementation of the Model Context Protocol that enables communication between a model context management server and client through a request-response architecture.
MCP Maker
Un servidor especializado que ayuda a los usuarios a crear nuevos servidores del Protocolo de Contexto de Modelo (MCP) proporcionando herramientas y plantillas para la creación de proyectos con diversas capacidades.
Jokes MCP Server
A Model Context Protocol server that provides Chuck Norris and Dad jokes, demonstrating how to integrate MCP servers with Microsoft Copilot Studio and GitHub Copilot.
Instantly MCP Server
Proporciona acceso a la API v2 de Instantly para la funcionalidad de gestión de campañas de correo electrónico y clientes potenciales.
Weather MCP Server
Provides real-time weather data and forecasts for any location using the OpenWeatherMap API. Supports current weather conditions, 5-day forecasts, and weather alerts with optional demo data when no API key is configured.
MCP-Expokossodo 2025
Enables management of Expokossodo 2025 events through 7 MCP tools for checking events, attendee registration, capacity monitoring, attendance confirmation, and real-time statistics. Features JWT authentication with role-based permissions for event coordinators and staff.
manim-mcp-server
I understand you'd like me to generate an animation similar to those created by 3Blue1Brown, using a single prompt. However, I can't directly *generate* the animation itself. I am a text-based AI. I can't create visual content like videos or animations. However, I *can* provide you with a detailed prompt that you can use with an AI animation tool (if one exists that can handle this level of complexity) or give to a human animator. This prompt will outline the animation's content, style, and pacing, aiming for a 3Blue1Brown aesthetic. **Here's a detailed prompt for an animation explaining the concept of Eigenvectors and Eigenvalues:** **Prompt:** "Create a 3Blue1Brown-style animation explaining Eigenvectors and Eigenvalues. The animation should be approximately 5 minutes long and follow a clear, intuitive narrative. **1. Introduction (0:00 - 0:30):** * **Visual:** Start with a 2D grid representing the Cartesian plane. Show a vector, initially represented as an arrow, originating from the origin. * **Narration (Voiceover):** "Imagine a vector in space. We can transform this vector using a linear transformation, represented by a matrix." * **Animation:** Apply a simple shear transformation to the grid and the vector. The vector should clearly change direction and magnitude. * **Narration:** "Most vectors change direction when transformed. But what if a vector *doesn't* change direction? That's where eigenvectors come in." **2. Defining Eigenvectors (0:30 - 1:30):** * **Visual:** Show the same grid and vector. This time, apply a different transformation (e.g., a scaling transformation). The vector should only change in length, not direction. * **Animation:** Highlight the vector that remains on the same line after the transformation. * **Narration:** "An eigenvector is a special vector that, when transformed, only gets scaled. It stays on the same line as before." * **Visual:** Introduce the equation A*v = λ*v, where A is the transformation matrix, v is the eigenvector, and λ is the eigenvalue. * **Animation:** Visually represent the equation. Show A acting on v, resulting in a scaled version of v (λ*v). Use color-coding to link the variables in the equation to their visual representations. For example, A could be represented by a colored box, v by the vector itself, and λ by a scalar value displayed numerically. * **Narration:** "The amount by which the eigenvector is scaled is called the eigenvalue, represented by λ (lambda). This equation, A*v = λ*v, is the fundamental equation of eigenvectors and eigenvalues." **3. Visualizing Eigenvalues (1:30 - 2:30):** * **Visual:** Show several vectors on the grid. Apply a transformation. Some vectors should change direction significantly, while one or two should remain on their original lines (eigenvectors). * **Animation:** Highlight the eigenvectors. Display their corresponding eigenvalues (λ) as numerical values next to them. If λ is negative, show the eigenvector flipping direction. * **Narration:** "Eigenvalues can be positive, negative, or even zero. A positive eigenvalue means the eigenvector is scaled in the same direction. A negative eigenvalue means it's scaled and flipped. A zero eigenvalue means the eigenvector is squashed to the origin." * **Visual:** Show examples of each case (positive, negative, and zero eigenvalues) with clear visual representations. **4. Finding Eigenvectors (2:30 - 3:30):** * **Visual:** Start with the equation A*v = λ*v. Rearrange it to (A - λI)*v = 0, where I is the identity matrix. * **Animation:** Visually demonstrate the matrix subtraction (A - λI). Show the identity matrix I being scaled by λ and then subtracted from A. * **Narration:** "To find the eigenvectors, we need to solve this equation. We rearrange it to (A - λI)*v = 0. This means the determinant of (A - λI) must be zero." * **Visual:** Show the determinant of (A - λI) being calculated. Visually represent the determinant as the area scaling factor of the transformation represented by (A - λI). * **Animation:** Show how the determinant changes as λ varies. When the determinant is zero, highlight the corresponding value of λ. * **Narration:** "The values of λ that make the determinant zero are the eigenvalues. Once we have the eigenvalues, we can plug them back into the equation (A - λI)*v = 0 to find the corresponding eigenvectors." **5. Importance of Eigenvectors and Eigenvalues (3:30 - 4:30):** * **Visual:** Show a more complex transformation. Then, show the same transformation represented as a combination of scaling along the eigenvectors. * **Animation:** Decompose the transformation into its eigenvector components. Show how the transformation can be understood as scaling along the eigenvectors. * **Narration:** "Eigenvectors and eigenvalues allow us to understand complex transformations by breaking them down into simpler scaling operations along specific directions. They provide a fundamental understanding of the transformation's behavior." * **Visual:** Briefly show examples of applications of eigenvectors and eigenvalues, such as: * **Principal Component Analysis (PCA):** Show data points clustered in an ellipse, and highlight the eigenvectors representing the principal components. * **Vibrational Modes:** Show a vibrating string or structure, and highlight the eigenvectors representing the different modes of vibration. * **Google's PageRank Algorithm:** Show a network of web pages and briefly mention how eigenvectors are used to determine the importance of each page. **6. Conclusion (4:30 - 5:00):** * **Visual:** Reiterate the equation A*v = λ*v. * **Animation:** Show the eigenvector and eigenvalue visually, emphasizing their relationship. * **Narration:** "Eigenvectors and eigenvalues are powerful tools for understanding linear transformations. They reveal the fundamental directions and scaling factors that govern the transformation's behavior. They are essential concepts in linear algebra and have wide-ranging applications in various fields." * **Visual:** End with a visually appealing animation of eigenvectors and eigenvalues, perhaps showing them rotating or interacting in a dynamic way. **Style and Pacing:** * **Visual Style:** Use a clean, minimalist style with clear color-coding, similar to 3Blue1Brown's animations. Use smooth transitions and animations to maintain viewer engagement. * **Pacing:** Maintain a steady pace, allowing sufficient time for viewers to grasp each concept. Use pauses and visual cues to emphasize key points. * **Narration:** Use a clear, concise, and engaging voiceover. Explain concepts in a simple and intuitive way, avoiding overly technical jargon. * **Music:** Use background music that is subtle and supportive of the animation's message. **Technical Details:** * **Software:** Ideally, use a software package that allows for precise control over animation and mathematical visualization (e.g., Manim, Blender with Python scripting). * **Resolution:** 1920x1080 (Full HD) * **Frame Rate:** 30 fps **Key Considerations for the Animator:** * **Intuition over Rigor:** Focus on building intuition rather than providing rigorous mathematical proofs. * **Visual Clarity:** Prioritize visual clarity and avoid cluttering the screen with too much information. * **Storytelling:** Tell a compelling story that engages the viewer and makes the concepts memorable. This prompt provides a detailed outline for creating a 3Blue1Brown-style animation on eigenvectors and eigenvalues. You can adapt this prompt to other mathematical concepts as well. Remember to emphasize visual clarity, intuitive explanations, and a compelling narrative. Good luck!
XFOIL MCP Server
Enables aerodynamic analysis through XFOIL polar computations. Provides typed models and tools to run airfoil performance analyses from agents or automation workflows.
AbletonMCP
A server that connects Ableton Live to Claude AI through the Model Context Protocol, enabling AI-assisted music production and direct control of Ableton Live features.
Descripción General de las Funciones del Servidor MCP PostgreSQL
Senzing MCP Server
Enables entity resolution capabilities through the Senzing SDK, allowing AI assistants to search entities, manage records, analyze relationships between entities, and perform bulk data imports with multithreading.
E*TRADE MCP Server
Enables comprehensive E\*TRADE integration with OAuth authentication, account management, risk calculations, watch lists, and trading operations. Includes built-in risk management guardrails, portfolio tracking, market data access, and trading validation for safe automated trading operations.
Neolibrarian MCP
Enables read-only access to local Calibre libraries for searching metadata, inspecting book formats, and extracting content samples. Supports full-text search, batch operations, and detailed book analysis through natural language queries.